Hierarchical Stochastic Neighbor Embedding

Journal Article (2016)
Author(s)

Nicola Pezzotti (TU Delft - Electrical Engineering, Mathematics and Computer Science)

Thomas Hollt (TU Delft - Electrical Engineering, Mathematics and Computer Science)

Boudewijn P.F. Lelieveldt (TU Delft - Electrical Engineering, Mathematics and Computer Science, Leiden University Medical Center)

Elmar Eisemann (TU Delft - Electrical Engineering, Mathematics and Computer Science)

Anna Vilanova Bartroli (TU Delft - Electrical Engineering, Mathematics and Computer Science)

Research Group
Computer Graphics and Visualisation
DOI related publication
https://doi.org/10.1111/cgf.12878 Final published version
More Info
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Publication Year
2016
Language
English
Research Group
Computer Graphics and Visualisation
Journal title
Computer Graphics Forum (online)
Issue number
3
Volume number
35
Pages (from-to)
21-30
Event
EuroVis 2016 (2016-06-06 - 2016-06-10), Groningen, Netherlands
Downloads counter
206

Abstract

In recent years, dimensionality-reduction techniques have been developed and are widely used for hypothesis generation in Exploratory Data Analysis. However, these techniques are confronted with overcoming the trade-off between computation time and the quality of the provided dimensionality reduction. In this work, we address this limitation, by introducing Hierarchical Stochastic Neighbor Embedding (Hierarchical-SNE). Using a hierarchical representation of the data, we incorporate the well-known mantra of Overview-First, Details-On-Demand in non-linear dimensionality reduction. First, the analysis shows an embedding, that reveals only the dominant structures in the data (Overview). Then, by selecting structures that are visible in the overview, the user can filter the data and drill down in the hierarchy. While the user descends into the hierarchy, detailed visualizations of the high-dimensional structures will lead to new insights. In this paper, we explain how Hierarchical-SNE scales to the analysis of big datasets. In addition, we show its application potential in the visualization of Deep-Learning architectures and the analysis of hyperspectral images.